Literature DB >> 31576171

Common molecular markers between circulating tumor cells and blood exosomes in colorectal cancer: a systematic and analytical review.

Somayeh Vafaei1,2,3, Fahimeh Fattahi1,2, Marzieh Ebrahimi3, Leila Janani4, Ahmad Shariftabrizi5, Zahra Madjd1,6.   

Abstract

Nearly half of patients with colorectal cancer (CRC), the third leading cause of cancer deaths worldwide, are diagnosed in the late stages of the disease. Appropriate treatment is not applied in a timely manner and nearly 90% of the patients who experience metastasis ultimately die. Timely detection of CRC can increase the five-year survival rate of patients. Existing histopathological and molecular classifications are insufficient for prediction of metastasis, which limits approaches to treatment. Detection of reliable cancer-related biomarkers can improve early diagnosis, prognosis, and treatment response prediction and recurrence risk. Circulating tumor cells (CTCs) and exosomes in peripheral blood can be used in a liquid biopsy to assess the status of a tumor. Exosomes are abundant and available in all fluids of the body, have a high half-life and are released by most cells. Tumor-derived exosomes are released from primary tumors or CTCs with selective cargo that represents the overall tumor. The current systematic review highlights new trends and approaches in the detection of CRC biomarkers to determine tumor signatures using CTC and exosomes. When these are combined, they could be used to guide molecular pathology and can revolutionize detection tools. Relevant observational studies published until July 24, 2019 which evaluated the expression of tumor markers in CTCs and exosomes were searched in PubMed, Scopus, Embase, and ISI Web of Science databases. The extracted biomarkers were analyzed using String and EnrichR tools.
© 2019 Vafaei et al.

Entities:  

Keywords:  biomarker; circulating tumor cell, CTC; colorectal cancer; diagnosis; exosomes; prognosis; systematic review

Year:  2019        PMID: 31576171      PMCID: PMC6768129          DOI: 10.2147/CMAR.S219699

Source DB:  PubMed          Journal:  Cancer Manag Res        ISSN: 1179-1322            Impact factor:   3.989


Introduction

Colorectal cancer (CRC) is the third highest cause of cancer deaths worldwide.1,2 The time of diagnosis directly influences the overall survival rate of patients. The five-year survival rates are estimated to decrease 12.5% after the occurrence of metastasis vs for localized cancer. Histological examination of tumor tissue is the gold standard for diagnosis, but is invasive, time-consuming, and nonrepeatable over time. There is a need for new methods that are simple, non-invasive, and inexpensive to provide clear clinical evidence and improve early detection or predict a response to treatment.3,4 Serum biomarkers such as carcinoembryonic antigens (CEAs) and carbohydrate antigen 19-9 (CA19-9) along with multi-target stool DNA tests represent the concrete implementation of non-invasive methods for CRC screening5,6 There is urgent need for more reliable molecular markers that demonstrate the heterogeneity of cancer cells during progression. The use of biological fluids as sources of nucleic acid-biomarkers for liquid biopsies in oncology has clinical promise7,8 Molecular characterization of cancer signatures also can provide relevant information for personalized treatment of tumors.9,10 Circulating tumor cells (CTCs) and exosomes are shed from a tumor mass and enter the bloodstream. They can provide a metastatic niche for the invasion and migration of a tumor, so detection of their markers is critical.11 Ashworth et al, first identified CTCs as valuable indicators of cancer progression.12 CTCs detach from the primary tumor, intravasate into the bloodstream, evade immune detection, survive and extravasate into the microvessels of target tissue to establish a micro-metastatic niche.13 They have been identified in many cancers, including colon cancer. CTCs in the bloodstream may exist as single cells with a different EMT phenotypes or as clusters that bind to platelets or macrophages or are reactivated as stromal cells.14,15 The presence and number of CTCs before and during treatment are a strong independent predictor of shorter progression-free survival and overall survival of CRC patients.16 In spite of their advantages, researchers believe that the most challenging obstacles related to research on CTCs are their extremely low numbers, short lifetimes, fragility, and their heterogeneity and plasticity. The investigation of specific and reliable markers for their detection or isolation is an undeniable issue.17 Extracellular vesicles (EVs) generally include microvesicles (100–350 nm), apoptotic bodies (500–1000 nm), and exosomes (30–150 nm).18 Exosomes are nanovesicles with membrane-bound phospholipids which introduced and confirmed by Pan et al,19 and are actively secreted by mammalian cells into body fluids such as urine, plasma, and saliva. Exosomal cargo includes lipids, proteins, DNA, and RNA (mRNA, miRNA, long non-coding RNA) that are selected according to their roles. Exosomes involved in many biological processes, especially intercellular communication, establish a premetastatic niche by carrying oncogenic elements that suppress host immune responses.20 Exosomes are abundant, have high half-lives and are released by most cells. This is in contrast with CTCs, which are tumor specific, rare, fragile, have a short life and are difficult to isolate. It is possible to design a molecular marker common between the exosomes and CTCs for better understanding of the metastasis process. American Society of Clinical Oncology suggests circulating exosomes may provide an alternative platform for monitoring disease progression as opposed to CTCs.21 Several ongoing studies have aimed at quantifying a stress protein or other biomarkers in the blood and urine for monitoring and early diagnosis of malignant solid tumors (https://clinicaltrials.gov). The current analytical review is the first to explore similar molecular mechanisms and pathways between CTCs and Exosomes. In this systematic review, all molecular mechanisms that can potentially apply to the diagnosis and prognosis of CRC using CTCs and exosomes are discussed.

Materials and methods

Search strategy for literature mining

Observational studies evaluating the expression of circulating CRC cells and exosomes markers from 1980 to July 24, 2019 were electronically searched for in the PubMed, Scopus, Embase, and ISI Web of Science databases. The search syntax was modified for each database in accordance with their rules, the Mesh terms and keywords as listed in detail in Table 1.
Table 1

Search strategy of CTC and exosome in colorectal cancer

Search strategyNo. of papers
2019 24 July
SCOPUS
1(TITLE-ABS-KEY (cecum OR colon OR sigmoid OR rectum OR anal)) AND (TITLE-ABS-KEY ((neoplasm OR cancer OR tumor OR tumors OR carcinoma))) OR (TITLE-ABS-KEY ((colorectal AND neoplasms OR crc)))258,569
2(TITLE-ABS-KEY (circulating AND tumor AND cell)) OR (TITLE-ABS-KEY (circulating AND neoplastic AND cells)) OR (TITLE-ABS-KEY (neoplasm AND micro-metastasis)) OR (TITLE-ABS-KEY (ctc OR ctm OR dtc))60,012
3((TITLE-ABS-KEY (gene AND expression AND profiling)) OR (TITLE-ABS-KEY (messenger AND rna)) OR (TITLE-ABS-KEY (rna OR transcriptome OR mrna))) AND ((TITLE-ABS-KEY (early AND diagnosis)) OR (TITLE-ABS-KEY (early AND detection)) OR (TITLE-ABS-KEY (prognosis OR diagnosis OR biomarkers OR screening OR diagnostic OR prognosis OR prognostic)))209,207
4(TITLE-ABS-KEY (extracellular AND vesicle)) OR (TITLE-ABS-KEY (cell-derived AND microparticles)) OR (TITLE-ABS-KEY (extracellular AND vesicles)) OR (TITLE-ABS-KEY (ev OR microvesicle OR exosomes))274,615
1 & 2 & 3(((TITLE-ABS-KEY (gene AND expression AND profiling)) OR (TITLE-ABS-KEY (messenger AND rna)) OR (TITLE-ABS-KEY (rna OR transcriptome OR mrna))) AND ((TITLE-ABS-KEY (early AND diagnosis)) OR (TITLE-ABS-KEY (early AND detection)) OR (TITLE-ABS-KEY (prognosis OR diagnosis OR biomarkers OR screening OR diagnostic OR prognosis OR prognostic)))) AND ((TITLE-ABS-KEY (circulating AND tumor AND cell)) OR (TITLE-ABS-KEY (circulating AND neoplastic AND cells)) OR (TITLE-ABS-KEY (neoplasm AND micrometastasis)) OR (TITLE-ABS-KEY (ctc OR ctm OR dtc))) AND ((TITLE-ABS-KEY (cecum OR colon OR sigmoid OR rectum OR anal)) AND (TITLE-ABS-KEY ((neoplasm OR cancer OR tumor OR tumors OR carcinoma))) OR (TITLE-ABS-KEY ((colorectal AND neoplasms OR crc)))) AND (LIMIT-TO (LANGUAGE, “English”)) AND (LIMIT-TO (SRCTYPE, “j”)) AND (LIMIT-TO (DOCTYPE, “ar”) OR LIMIT-TO (DOCTYPE, “no”) OR LIMIT-TO (DOCTYPE, “le”)) AND (LIMIT-TO (EXACTKEYWORD, “Human”))118
1 & 2 & 4(((TITLE-ABS-KEY (gene AND expression AND profiling)) OR (TITLE-ABS-KEY (messenger AND rna)) OR (TITLE-ABS-KEY (rna OR transcriptome OR mrna))) AND ((TITLE-ABS-KEY (early AND diagnosis)) OR (TITLE-ABS-KEY (early AND detection)) OR (TITLE-ABS-KEY (prognosis OR diagnosis OR biomarkers OR screening OR diagnostic OR prognosis OR prognostic)))) AND ((TITLE-ABS-KEY (extracellular AND vesicle)) OR (TITLE-ABS-KEY (cell-derived AND microparticles)) OR (TITLE-ABS-KEY (extracellular AND vesicles)) OR (TITLE-ABS-KEY (ev OR microvesicle OR exosomes))) AND ((TITLE-ABS-KEY (cecum OR colon OR sigmoid OR rectum OR anal)) AND (TITLE-ABS-KEY ((neoplasm OR cancer OR tumor OR tumors OR carcinoma))) OR (TITLE-ABS-KEY ((colorectal AND neoplasms OR crc)))) AND (LIMIT-TO (DOCTYPE, “ar”) OR LIMIT-TO (DOCTYPE, “ip”)) AND (LIMIT-TO (EXACTKEYWORD, “Human”)) AND (LIMIT-TO (LANGUAGE, “English”)) AND (LIMIT-TO (SRCTYPE, “j”))37
PUBMED
1((Colorectal Neoplasms[Title/Abstract] OR “Colorectal Neoplasms”[Mesh] OR CRC[Title/Abstract]) OR ((“Cecum”[Mesh] OR “Colon”[Mesh] OR “Colon, Sigmoid”[Mesh] OR “Rectum”[Mesh] OR “Anal Canal”[Mesh]) AND (“Neoplasms”[Mesh] OR “Carcinoma”[Mesh])) OR ((cecum[Title/Abstract] OR colon[Title/Abstract] OR sigmoid[Title/Abstract] OR rectum[Title/Abstract] OR anus[Title/Abstract]) AND (neoplasm[Title/Abstract] OR cancer[Title/Abstract] OR tumor[Title/Abstract] OR tumors[Title/Abstract] OR carcinoma[Title/Abstract]))251,819
2(“Neoplastic Cells, Circulating”[Mesh] OR Circulating Tumor Cell[Title/Abstract] OR “Neoplasm Micrometastasis”[Mesh] OR CTC[Title/Abstract] OR CTM[Title/Abstract] OR DTC[Title/Abstract]20,001
3(“Prognosis”[Mesh] OR “Diagnosis”[Mesh] OR “Early Diagnosis”[Mesh] OR “Early Detection of Cancer”[Mesh] OR “Biomarkers, Tumor”[Mesh]) OR (“screening”[Title/Abstract] OR “early detection”[Title/Abstract] OR “Diagnosis”[Title/Abstract] OR “Diagnostic”[Title/Abstract] OR “Prognosis”[Title/Abstract] OR “Prognostic”[Title/Abstract]) AND (“RNA, Messenger”[Mesh] OR “RNA”[Mesh] OR “Transcriptome”[Mesh] OR “Gene Expression Profiling”[Mesh] OR “mRNA” OR “RNA” OR “Transcriptome” OR “gene expression profiling”)376,269
4(“extracellular vesicles”[Mesh] OR “Cell-Derived Microparticles”[Mesh] OR “EV” OR “microvesicle” OR “extracellular vesicle” OR “Exosomes”[Mesh] OR Exosome)41,831
1 & 2 & 3Search ((((((Colorectal Neoplasms[Title/Abstract] OR “Colorectal Neoplasms”[Mesh] OR CRC[Title/Abstract]) OR ((“Cecum”[Mesh] OR “Colon”[Mesh] OR “Colon, Sigmoid”[Mesh] OR “Rectum”[Mesh] OR “Anal Canal”[Mesh]) AND (“Neoplasms”[Mesh] OR “Carcinoma”[Mesh])) OR ((cecum[Title/Abstract] OR colon[Title/Abstract] OR sigmoid[Title/Abstract] OR rectum[Title/Abstract] OR anus[Title/Abstract]) AND (neoplasm[Title/Abstract] OR cancer[Title/Abstract] OR tumor[Title/Abstract] OR tumors[Title/Abstract] OR carcinoma[Title/Abstract])))) AND ((“Neoplastic Cells, Circulating”[Mesh] OR Circulating Tumor Cell[Title/Abstract] OR “Neoplasm Micrometastasis”[Mesh] OR CTC[Title/Abstract] OR CTM[Title/Abstract] OR DTC[Title/Abstract])) AND (((“Prognosis”[Mesh] OR “Diagnosis”[Mesh] OR “Early Diagnosis”[Mesh] OR “Early Detection of Cancer”[Mesh] OR “Biomarkers, Tumor”[Mesh]) OR (“screening”[Title/Abstract] OR “early detection”[Title/Abstract] OR “Diagnosis”[Title/Abstract] OR “Diagnostic”[Title/Abstract] OR “Prognosis”[Title/Abstract] OR “Prognostic”[Title/Abstract]) AND (“RNA, Messenger”[Mesh] OR “RNA”[Mesh] OR “Transcriptome”[Mesh] OR “Gene Expression Profiling”[Mesh] OR “mRNA” OR “RNA” OR “Transcriptome” OR “gene expression profiling”)))) Filters: Humans; English164
1 & 2 &4Search (((((((Colorectal Neoplasms[Title/Abstract] OR “Colorectal Neoplasms”[Mesh] OR CRC[Title/Abstract]) OR ((“Cecum”[Mesh] OR “Colon”[Mesh] OR “Colon, Sigmoid”[Mesh] OR “Rectum”[Mesh] OR “Anal Canal”[Mesh]) AND (“Neoplasms”[Mesh] OR “Carcinoma”[Mesh])) OR ((cecum[Title/Abstract] OR colon[Title/Abstract] OR sigmoid[Title/Abstract] OR rectum[Title/Abstract] OR anus[Title/Abstract]) AND (neoplasm[Title/Abstract] OR cancer[Title/Abstract] OR tumor[Title/Abstract] OR tumors[Title/Abstract] OR carcinoma[Title/Abstract])))) AND (((“Prognosis”[Mesh] OR “Diagnosis”[Mesh] OR “Early Diagnosis”[Mesh] OR “Early Detection of Cancer”[Mesh] OR “Biomarkers, Tumor”[Mesh]) OR (“screening”[Title/Abstract] OR “early detection”[Title/Abstract] OR “Diagnosis”[Title/Abstract] OR “Diagnostic”[Title/Abstract] OR “Prognosis”[Title/Abstract] OR “Prognostic”[Title/Abstract]) AND (“RNA, Messenger”[Mesh] OR “RNA”[Mesh] OR “Transcriptome”[Mesh] OR “Gene Expression Profiling”[Mesh] OR “mRNA” OR “RNA” OR “Transcriptome” OR “gene expression profiling”)))) AND (((“extracellular vesicles”[Mesh] OR “Cell-Derived Microparticles”[Mesh] OR “EV” OR “microvesicle” OR “extracellular vesicle” OR “Exosomes”[Mesh] OR Exosome))))) Filters: Humans; English66
Embase
1(cecum OR sigmoid OR rectum OR anal) AND (neoplasm OR cancer OR tumor OR tumors OR carcinoma) OR “colorectal cancer” OR crc323,384
2ctc OR ctm OR dtc OR (circulating AND neoplastic AND cells) OR (circulating AND tumor AND cell) OR (neoplasm AND “micro-metastasis”)54,423
3(early AND diagnosis) OR (early AND detection) OR biomarkers OR screening OR diagnostic OR prognosis OR prognostic) AND (messenger AND rna) OR (gene AND expression AND profiling) OR mrna OR transcriptome101,305
4“membrane microparticle” OR “exosome”25,614
1 & 2 & 3#1 AND #2 AND #3 AND ([article]/lim OR [article in press]/lim OR [letter]/lim OR [note]/lim) AND [english]/lim AND [humans]/lim AND [embase]/lim135
1 & 2 & 4#1 AND #2 AND #4 AND ([article]/lim OR [article in press]/lim OR [letter]/lim OR [note]/lim) AND [english]/lim AND [humans]/lim AND [embase]/lim52
Web of Science
1TI=(Cecum OR Colon OR Colon Sigmoid OR Rectum OR Anal) AND (neoplasm OR cancer OR tumor OR tumors OR carcinoma) OR TI=(Colorectal Neoplasms OR CRC)43,039
2TS=(Circulating Neoplastic Cells OR Circulating Tumor Cell OR Neoplasm Micrometastasis OR CTC OR CTM OR DTC)44,339
3TS=(Prognosis OR Diagnosis OR Early Diagnosis OR Early Detection OR Biomarkers OR screening OR Diagnostic OR Prognosis OR Prognostic) AND TS=(Messenger RNA OR RNA OR Transcriptome OR Gene Expression Profiling OR mRNA)138,133
4TS=(extracellular vesicles OR Cell-Derived Microparticles OR EV OR microvesicle OR extracellular vesicle OR Exosomes)212,089
1 & 2 & 3#1 AND #2 AND #3 (#8 AND #7 AND #3) AND LANGUAGE: (English) AND DOCUMENT TYPES: (Article)19
1 & 2 & 4#1 AND #2 AND #4 AND (#8 AND #7 AND #3) AND LANGUAGE: (English)15

Abbreviation: CTC, Circulating tumor cells.

Search strategy of CTC and exosome in colorectal cancer Abbreviation: CTC, Circulating tumor cells. The authors (S. Vafaei and F. Fattahi) searched and identified eligible studies and excluded all irrelevant articles after reviewing the publication titles and abstracts. Duplicate publications were excluded. Discrepancies were resolved between the two reviewers by consensus and by consulting the other authors. Next, the full text of the selected publications was retrieved and fully reviewed. This systematic review has been carried out in accordance with the Preferred Reporting Items for Systematic Reviews and Meta-Analyses.22

Publication inclusion criteria

The inclusion criteria for this systematic review followed the criteria of population, intervention, control, and outcomes. Observational studies (case-control) investigating CTC and exosomes mRNA and gene markers for the diagnosis and prognosis of CRC patient samples were included if they met the following criteria: The article must be published in English and the full text must be available. Studies included those on CRC patient blood samples and human blood for CTC, although tissue or cell lines for exosomes were done because exosomes research is rare and in its initial stages. Expression of mRNA and gene markers in patient specimens or cell lines was detected by established molecular methods. Studies demonstrated the correlation between mRNA profiling using isolation, detection, or validation methods, included sample type and size and other clinical parameters of diagnosis and prognosis, tumor stage and the frequency of estimated marker expression. Study characteristics (first author surname, publication year, and study design) were included.

Publication exclusion criteria

Exclusion criteria included: Evidence and article on CTC and exosomes covering review articles, seminars, letters, expert opinions, book chapters, meeting records, commentaries, and clinical guidelines. In-vitro or in-vivo experimental studies. Articles that were not published in English. Full text of the article not available. Exclusion criteria for CTC articles were: Studies performed only on cell lines or tissue samples. Studied housekeeping genes, such as glyceraldehyde-3-phosphate dehydrogenase, actin beta, β2-microglobulin, as they are not specific markers for CTC detection and expressed in all cells. Bioinformatics analysis or data mining without experimental confirmation of the introduced biomarkers. Therapy gaudiness based on the CTC results (perioperative and postoperative) in predicting the clinical outcome, not counting for drug effect on the expression of CTC genes. The study only tested the spiked cell lines in human blood donors and not the actual patients. In exosome studies, because of the limited data, we reviewed all articles on all markers that were introduced using the cell lines, tissue, or blood, even those only introduced through bioinformatics means without experimental confirmation.

Risk of bias (quality) assessment

The quality of each study was assessed using the Newcastle–Ottawa Scale (NOS), a well-known scale for assessing the quality and risk of bias in observational studies.23 NOS gives a score between 0 (minimum) and 9 (maximum). Studies with a NOS score >6 were considered to be of high quality, making them possible for use as potential moderators in meta-regression analysis.

Statistical analysis

Because the studies included were not sufficiently similar in terms of study design, experimental techniques, and heterogeneity of genetic variants, a meta-analysis was not performed.

Bioinformatics approach to systematic search

Molecular pathology is a valuable tool in the development of a cancer signature. The initially extracted markers in this article were subjected to STRING (https://string-db.org/) for better understanding of the significantly related pathway and secondary data were enriched using the EnrichR (amp.pharm.mssm.edu/Enrichr/) web tool. The GO project provided ontologies to describe the attributes of the gene products in the non-overlapping domains of molecular biology. Molecular function describes activities (such as catalytic or binding activities) at the molecular level. Biological processes describe biological goals accomplished by one or more ordered assemblies of molecular functions. Cellular component describes the locations of subcellular structures and macromolecular complexes.24

Results

Literature

The initial search retrieved a total of 607 studies using the search strategy. After primary selection, 497 papers were excluded because they were duplicates, had irrelevant titles or were paper abstracts. Eventually, 110 studies were selected for further evaluation. The schematic of the design and the reasons for exclusions are summarized in Figures 1 and 2 for CTC and exosomes, respectively.
Figure 1

Design of PRISMA flow diagram explaining details of our search process was applied during the article selection for circulating tumor cell.

Figure 2

Design of PRISMA flow diagram explained details of our search process that applied during the article selection for Exosome.

Clinical applications of CTCs and exosomes in CRC as diagnostic markers

CTCs

Antigen expression of circulating cells and their specific phenotypes affects the progression of cancer and patient survival; thus, the focus was on CTC molecular markers that could lead to the detection of CTC rather than isolation in blood samples. CTC detection methods included real-time polymerase chain reaction (RT-PCR), flow cytometry, fluorescence in situ hybridization, and immunocytochemistry. Isolation methods included Cellsearch, OncoQuick, Filration, magnetic-activated cell sorting, fluorescence-activated cell sorting, Adnatest Colon Cancer Select and Detect, CELLection electrophoresis assay, and microfluidic devices. When attempting to find more reliable markers for CTCs in CRC cases, 6 out of 39 articles described only CK20 mRNA as the target gene, which is not transcribed in normal hematopoietic cells. It has previously been reported through immunohistochemistry by Moll et al,25–30 and has been seen in control blood samples through sensitivity assay and sampling,29 in addition to CK20, CA19-9, and CEA, which is used in clinics routinely for CRC detection, also has been introduced as a marker of CTC in CRC. Six of 39 studied examined CEA alone31–36 or in association with markers such as CK19,37,38 anti-epithelial cell adhesion molecule (EPCAM),39–43 and transmission electron microscopy (TEM)-8.44 Wong et al, used a sensitivity assay for the detection of CTCs and nodal metastases using CD44 splice variants as a tumor marker.45 It has been proven that RT-PCR in combination with positive isolation of epithelial tumor cells (addition of Ber-EP4 immunomagnetic) and negative isolation of non-epithelial cells (CD45 immunomagnetic beads used to deplete leukocytes from MNC) could improve detection.30,36 Guanylyl-cyclase C (GCC) is another marker introduced to detect rare epithelial circulating metastatic cancer cells.46–48 After 2004, researchers focused on multi-marker panels in literature or data mining as listed in Table 2.49–56 Besides these, novel markers such as serine (or cysteine) proteinase inhibitor, clade B (ovalbumin), SERPINB5,57 epidermal growth factor receptor (EGFR),58–60 epithelial cell transforming sequence 2 oncogene (ECT2)61 FAM172A,62 A3 receptor63 have been examined as well as other markers, especially through bioinformatics analysis.64
Table 2

The biomarkers which worked for diagnostic of CRC in circulating tumor cells

BiomarkerTechnique of isolation/detection of CTCTechnique of validation/related oneRelated markerCutoffPatients (number/type)Patient stageAuthor/ yearCTCs positive ratePMID
CK20Nested RT-PCR1SWI 116, HT29 cell spiking5 mL57 patients, 2 controls2/BloodI–IV3Soeth, 1996.2835%8,797,868
Nested RT-PCRA818-4 cell spiking5 mL39 patients, 12 controls/BloodI–IVSoeth, 1997.2724%9,242,433
RT-PCRHT29 cell spiking, ImmunohistochemistryPBGD5–10 m30 patients, 16 controls/BloodI–IVVlems, 2002.2930%12,032,226
CD45 Immune magnetic beads,/or Ber-EP4 immuno magnetic beadsLS174T cell spiking5 mL40 patients, 10 controls/BloodA–D Dukes3Guo, 2005.3080.0%, 82.5%, 72.5%16,048,578
RT-PCR5–10 mL58 patients, 12 controls (abnormal)/BloodA–C DukesZhang, 2005.2544.8% to 69.0%15,637,763
RT-PCRCEA, CK1915 mL57/BloodA–D DukesKatsumata, 2006.2642.1%17,058,136
CEACD45 Immune magnetic beads and/or Ber-EP4 immuno magnetic beadsLS174T cell spiking5 mL25 patients, 10 controls/BloodA–D DukesGuo, 2004.3625.0%, 83.3%, 88.9%15,490,093
RT-PCRSouthern blotting, Colo201, HT1 16, HT29, and HT115 cell spiking14 mL31 patients, 22 controls/BloodLiver metastasisJonas, 1996.3158%9,014,772
RT-PCRCell spiking10 mL95 patients, 11 controls/BloodI–IVCastells, 1998.3241%9,823,981
RT-PCRColo201 cell spiking14 mL24 patients, 9 controls/BloodB, C, D DukesNoh, 1999.3341.1%10,642,939
Nested RT-PCRIn-vivo assayCA19.9, CA72-47 mL51 patients, 40 controls, 18 patients with benign colorectal disease/BloodA–D DukesGuadagni, 2001.3467%11,289,125
RT-PCRHT29 and LS147T cell spiking, Sequence analysisCK2020 mL32 patients, 17controls/BloodHampton, 2002.3536%12,420,218
CEA, CK19Semi-quantitative RT-PCRSouthern blotting, SK-BR-3 cell spiking20 mL33 patients, 26 controls/BloodB–D DukesWong, 2001.3864%, 88%11,121,864
RT-PCR-3 mL53 patients, 25 controls/BloodI–IIISilva, 2002.3773.6% 32%11,889,075
CEA, EPCAM.Adnatest ColonCancerSelect & Detect.Multiplex RT-PCR50 patients, 40 controls/BloodI–IIIMourtzikou, 2012.4166%, 6%10.6051/j.issn.2224–3992.2012.01.070
EPCAMMultigene qRT-PCR, flow cytometryCK19, CK20, CEA, EGFR.7.5 mL49 patients/BloodI–IVCohen, 2006.3980%16,945,168
EPCAMMicrofluidic device, FISH, CellsearchPan CK, EPCAM2 mL5 patients, 200 controls/bloodWith metastasisGogoi, 2016.40100%26,808,060
EPCAMCTC-chipNCI-H1650 cell spiking2.7 mL10 patents/BloodAdvancedNagrath, 2007.4367%18,097,410
CEA, TEM-8RT-PCRMAD-MB231 and HT29 cell spiking5 mL40 patients, 40 controls/BloodI–IIIRaeisossadati, 2011.4455%, 22.5%21,573,768
CD44RT-PCRSouthern blotting, HCTl16 cell spiking, Restriction enzyme analysis15 mL24 patients, 8 controls/BloodB, C DukesWong, 1997.4516%10.1046/j.1365–2168.1997.02685
GCCNested RT-PCRPSA, PSMA, CEA, CK-19, CK-20, mucin 1, GA733.2.-24 patients, 20 controls/BloodD DukesFava, 2001.46100%11,579,116
Nested Duplex RT-PCRImmuno histochemistryCD3110 mL58 patients, 11controls/BloodB–D DukesTien, 2001.4752%11,410,499
Nested Duplex RT-PCRCCL-220 cell spiking, Immunohistochemistry, Western blotting10 mL68 patients, 11controls/BloodA–D DukesTien, 2004.4858.8%15,192,312
BMP4, CycD, FAM3D, GPA33, ZPX2, LGALS4, TACSTD1, hTERT, TFF3, TM4SF3, UGT1A9, VIL1, FLJ20127.RT-PCRB2M10–15 mL16 pooled patients, 16 controls/BloodI–IVSolmi, 2004.49-, 100%, 100%, -, 100%, 100%, 100%, 100%, 100%, 37.5%, 83%, -, 36.3%15,375,555
CK-20, CEA, CK-19, REG4, uPA, TIAM1.RT-PCR80 patients, 98 controls/BloodI–IIYeh, 2006.5082.5%, 78.8%, 82.5%, 80.0%, 78.8%, 80.0%.16,391,796
TMEM69, RANBP3, PRSS22.Microarray screening,QRT-PCR10–15 mL2 patients, 4 controls/BloodTNM stageSolmi, 2006.51~3-fold17,054,783
LOC644844, FABP1, CEACAM5, MUC13, GUCA2A, ABP1, SLC26A3Digital Gene Expression Displayer (DGED), RT-PCR5 mL8 patients, 9 controls/BloodLauriola, 2010.5220,596,680
SERPINB5qRT-PCRSW480 and T84 cell spikingVSNL1, DPEP1, STC1.5 mL818 patients, 4 IBD, 8 controls, 36 control without malignant disease/BloodTNM stageFindeisen, 2008.5736%18,949,363
CK20, CK19, EGFRMultiplex-PCR6 mL81 patients, 38 controls/Blood0–IVVaiopoulos, 2014.5824,922,677
CK20,CEA, EGFR,Nested RT-PCR36 patients, 18 controls/BloodI–IVTeama, 2010.5941.7, 61.1%, 66.7%10.1016/j.ejmhg.2009.10.001
EGFRAdnaTest Colon Cancer Select, AdnaTest Colon Cancer detectCOLO 205, HCC-2998, HCT-116, LoVo, WiDr, CACO-2, HT-29, SW-480, T84, DLD-1, SW-948, SW-1116 cell spiking, IHC, Multiplex RT-PCR.EPCAM, CEA.15 mL20 patients, 22 controls/BloodTNM stageLankiewicz, 2008.6018%18,936,523
ECT2Nested qPCRCEA4 mL90 patients, 151controls/bloodI–IVChen, 2017.6128,362,321
FAM172AFiltrationIn situ hybridizationEpCAM, CK8, CK18, CK19, Vimentin, Twist, CD45.5mL45/BloodI–IVCui, 2017.6275.6%28,618,931
A3 adenosine receptorsReal-time RT-PCRImmunocytochemistry40 mL30/BloodI–IVGessi, 2003.6315,355,922
TGFβ1, APP, CD9, CLU, ITGB5, LIMS1,RSU 1, TIMP1, TLN1, VCL, BMP6.CELLectionTM, Agilent expression arraysReal-time RT-PCREPCAM7.5 mL28 patients, 10 controls/BloodPrimary and metastasisBarbazan, 2012.5322,811,761
VIL1, TBX20, GPA33, FAM132ACELLectionTMReal-time RT-PCR, HT29 and HCT116 cell spikingCD45, EPCAM7.5 mL44 patients, 22 controls/BloodIVBarbazan, 2012.5477.2%22,304,365
TSPAN8, LGALS4.qRT-PCRTRAM based data set meta-analysisEPCAM, SPINK1, COL3A1, CEACAM5, COL1A2, CDH1, CKT18, SLC26A3, REG1A, FN1, LUM, CEACAM6, CK205 mL67 patients, 67 controls/BloodI–IIIRodia, 2016.6426,993,598
LOXL3, ZEB2, VIL1, TIMP1, CLU, TLN1AdnaTest colon cancerCD45-, EPCAM, CK 8, 18, and/or 197.5 mL50 patients/BloodAdvancedAlonso-Alconada 2017.5529,058,262
VIL1, CLU, TIMP1, LOXL3 and ZEB2CELLectionTMqRT-PCREPCAM7.5 mL50 patients/BloodBarbazan 2012.5624,752,533

Abbreviations: RT-PCR, real-time polymerase chain reaction; Controls, healthy volunteer/donors; I–IV, TNM classification of malignant tumors (TNM); A–D Dukes, Dukes staging system is a classification system for colorectal cancer.

The biomarkers which worked for diagnostic of CRC in circulating tumor cells Abbreviations: RT-PCR, real-time polymerase chain reaction; Controls, healthy volunteer/donors; I–IV, TNM classification of malignant tumors (TNM); A–D Dukes, Dukes staging system is a classification system for colorectal cancer.

Exosomes

Exosome isolation methods consisted of ultracentrifugation, commercial kits, and a combination of several methods based on their physical, chemical, immunological, and molecular markers. Characterization of exosomes was also achieved based on morphology, such as with scanning electron microscopy and TEM, based on size, such as with dynamic light-scattering and nanoparticle tracking assay or based on molecular profiling through conventional enzyme-linked immunosorbent assay, polymerase chain reaction, and Western blotting. Exosomes carry molecular markers such as DNA, RNA, and proteins. Many reports indicate that exosomes contain miRNAs;65–68 moreover, blood EVs contain a substantial fraction of intact mRNAs69–72 and a large number of assembling spliced junctions-circRNAs73 and long non-coding RNAs.72,74,75 Exosomal proteins belong to the following functional groups: tetraspanins, including CD63 antigen (CD63), CD9 antigen (CD9), CD81 antigen (CD81), heat shock proteins (HSC70 and HSC90), and endosomal sorting complexes required for transport proteins such as Alix and TSG101, found in a wide range of exosomes.76 The size of the extra vesicles varied and could influence gene expression. Larger vesicles (<100 nm) exhibited the greatest amount of EPCAM in extracted exosomes of HCT116 (CRC cell line) cells.77 The level of glypican-1 was evaluated in exosomes of patients before and after surgical treatment.78 KRTAP5-4 and MAGEA3 mRNA in the serum of patients could be used as diagnostic biomarkers to detect CRC.79 Ct-OATP1B3 mRNA was present in EVs derived from HCT116, HT-29, and SW480 cells that were declared to be serum-based CRC biomarkers,80 Huang et al, introduced UBC, H3F3A, HIST2H2AA3, AKT3, and HSPA1B as hub genes in bioinformatic analysis to serve as diagnostic markers and therapeutic targets of CRC in the future.81 Table 3 shows all of these results.
Table 3

The biomarkers which worked for diagnostic of CRC in Exosome

BiomarkerTechnique of exosome isolationTechnique of exosome validationTechnique of markers detection or validationRelated markerPatients (number/type)Patient stageAuthor/year:PMID
KRTAP5-4, MAGEA3Centrifugation syringe filterTEM, NTA, light microscopeBioinformatic Analysis, RT-PCRlncRNA30 patients, 30 control/BloodI–IVDong, 2016.7927,197,301
GPC1ExoCapTMTEM, Flow cytometry, Western blottingFlow cytometry, Western blot analysismiR‐96‐5p, miR‐149, miR‐182‐5p102 patients, 89 control/tissue and Blood, Cell line (HT‐29 & HCT‐116), MouseI–IILi, 2017.7828,233,416
EPCAMPEGELISA, SEMqRT-PCR, SEM, DLS, ELISAHCT‐116 Cell lineManri, 2016.7727,917,441
UBC, H3F3A, HIST2H2AA3, AKT3, HSPA1BGSE100206, GSE100063, GSE32323 (Bioinformatic Analysis)29 patients, 49 control/tissue and BloodHuang, 2018.81doi: 10.21037/tcr.2018.05.32
OATP1B3Exosome Isolation kit (Thermo Fisher Scientific), PVDF filter and Differential centrifugationTEM, Western blottingqRT-PCR, Western blottingHCT116, HT-29, and SW480 cell line, Blood of MouseMorio, 2018.8029,491,222

Abbreviations: TEM, transmission electron microscopy; NTA, nanoparticle tracking analyzer; PEG, polyethylene glycol polymer; ELISA, enzyme-linked immunosorbent assay; SEM, scanning electron microscope; DLS, dynamic light-scattering.

The biomarkers which worked for diagnostic of CRC in Exosome Abbreviations: TEM, transmission electron microscopy; NTA, nanoparticle tracking analyzer; PEG, polyethylene glycol polymer; ELISA, enzyme-linked immunosorbent assay; SEM, scanning electron microscope; DLS, dynamic light-scattering.

Clinical applications of CTCs and exosomes in CRC as prognostic markers

Many researchers had discovered prognostic markers related to CRC as a beneficial tool for the detection of CTC. Five papers reported only CK20-positive as a prognostic marker. It caused significantly shorter survival in patients than the CK 20-negative marker.82–86 However, some studies emphasized only on CEA as a marker (five articles)87–91 and several studies also introduced both CK20 and CEA as prognostic markers.92–96 In most articles, CK20 and/or CEA were accompanied by markers such as CK19,97–102 GCC,96,103,104 Prominin 1 (CD133),95,100,105,106 EPCAM,107–109 survivin,110,111 ProtM,112 mucin 1 (MUC 1),105 and mucin 2 (MUC 2),99 and telomerase reverse transcriptase (hTERT).101,113,114 Douard et al, showed that the expression of carcinoembryonic antigen-related cell adhesion molecule 5 (CEACAM5; formerly CEA)102,115 and CEACAM7 (formerly CGM2)115,116 was more sensitive than use of a single marker in detecting CTCs, in contrast to the other studies, Bessa et al, showed that assessment of CTCs using RT-PCR CEA before surgery does not have prognostic value for CRC patients.117 Some articles examined markers that had been investigated previously, such as EGFR,107,118–121 Plastin3),122,123 anterior gradient-2,102,124,125 leucine-rich repeat-containing-G-protein-coupled receptor 5,102,109,126–128 double cortin-like kinase 1,109,127 twist family bHLH transcription factor 1,110,129 and aldehyde dehydrogenase 1105,129 as prognostic markers in CRC through CTC. Gradilone et al, assessed CK19 (75%), CK20 (8%), and EGFR (25%) expression in CTCs of some malignant tumors, including CRC samples, by RT-PCR followed by southern blot hybridization. They reported no correlation between prognostic values of CTCs and clinical manifestations of CRC.130 Histone-like protein (HLM),120 tenascin C,121 aquaporin (AQP5),131 plakophilin 3, tyrosinase, prostate-specific antigen),132 universal MAGE-A,133 disheveled segment polarity protein 1 (DVL1),134 CD47,135 and CD44 variant exon 9 (CD44v9)136 were proposed as markers in a smaller number of articles. The heterogeneity of CTC markers led some researchers to focus on multi-marker panels in data mining as listed in Table 4.101,105,109,110,114,125,129,137–139
Table 4

The biomarkers which worked for prognostic of CRC in circulating tumor cells

BiomarkerTechnique of isolation/detection of CTCTechnique of validation/related oneRelated markerCutoffPatients (number/type)Patient stageAuthor/yearCTCs positive ratePMID
CK20RT-PCRColo205 cell spiking2 mL8 patients, 3 controls/BloodIII–IVFunaki, 1997.8436%9,048,967
RT-PCRHT29 cell spiking10 cells/2 mL26 patients, 12 controls/BloodB, C Dukes stageWyld, 1998.8248%9,645,353
RT-PCR10 mL108 patients, 38 controls/BloodI–IVHinz, 2012.8325%22,395,998
qRT-PCR5 mL95 patients, 23 controls/BloodI–IVSamija, 20138523,558,939
RT-PCR5 mL95 patients, 23 controls/BloodI–IVKust, 2016.8627,144,776
CEART-PCRSouthern blot hybridization7 mL69 patients, 16 controls/BloodI–IVPiva, 2000.8734%11,096,345
qRT-PCRCOLM-2 cell spiking5–7 mL99 patients, 20 controls/BloodI–IIIIto, 2002.8844.4%12,065,095
RT-PCR5 mL108 patients, 76 controls/BloodIII–IVKanellos, 2006.8911.1%16,788,936
Membrane arraysRT-PCR4 mL141 patients/BloodII–IIILu, 2011.9033.3%21,343,933
CellSearch (EPCAM)CellTracks® Analyzer IICD457.5 mL20 patients/BloodI–IIIThorsteinsson, 2011.915%21,378,346
CK20, CEA.RT-PCRColo320 cell spiking10 mL52 patients, 10 controls/BloodI–IVYamaguchi, 2000.9238.4%, 36.5%10,862,196
RT-PCRHT29 or HT115 cell spiking14 mL33 patients, 70 controls/BloodI–IVMathur, 2001.9385%11,417,979
RT-PCRLS 180 and C205; ATCC CL-187 and CCL-222 cell spiking12 mL39 patients,13 controls (abnormal)/BloodI–IIIGuller, 2002.9428%12,454,515
qRT-PCR167 patients, 25 controls/BloodI–IVIinuma, 2006.9522%16,391,782
qRT-PCRHT29 cell spikingCA19-910 mL46 patients, 23 controls/BloodI–IVLiu,2012.9665.21%, 36.95%22,414,974
CK20, CK19RT-PCRCell SpikingK-ras, p5320 mL35 patients, 23 controls/BloodI–IVNakamori, 1997.9826%9,378,009
CK20, CEA, CK19.Nested RT-PCR62 patients, 12 controls/BloodI–IVHuang, 2003.9735.5%, 48.4%, 51.6%12,684,893
CK20, GCC.RT-PCRCEA, CA1995 mL100 patients, 5 controls/BloodI–IIILiu, 2017.10328,418,917
qRT-PCRCEA5 mL69 patients, 23 controls//BloodI–IIILiu, 2013.10423,150,200
CK, CEA, CD133.qRT-PCRCK19, CK2010 mL735 patients/BloodB–C DukesIinuma, 201110624.52%21,422,427
CK20, CEA, CK19, CD133qRT-PCR197 patients, 20 controls (benign diseases)/BloodB–C DukesShimada, 2012.10063%22,267,181
CEA, EPCAM.CellSearch, TRC methodDLD1 cell spiking7.5 mL67 patients/BloodMetastaticSato, 2012.1089.0±23.4%, 64.3%21,732,137
CK20, CEA, Survivin.CD45 immuno magnetic beads + Ber-EP4 immuno magnetic beadsLovo cell spiking, Real-time RT-PCR10 mL156 patients, 40 benign patients, 40 healthy/BloodA–D DukesShen, 2008.11147.4%, 39.1%, 57.7%.18,845,519
CK20,CEA, ProtM,Real-time RT-PCRCOLO 205, LS-174-T, CX 2, CX 94, HCT 116, HT 29, CaCo2 cell spikingPBGD10 mL129 patients, 47 controls/Blood0–IVSchuster, 2004.11288%, 86%; 17%14,639,606
CK19, CK20, MUC1, MUC2.Immunobead RT-PCRSW48, SW480, HT29, LIM-2412, LIM-1215, LIM-2099, LIM-2405, LIM-1899, LIM-2463 and LIM-1863 cell spiking20 mL94 patients, 20 controls/BloodA–D DukesHardingham, 2000.9920%10,719,724
CK-19, CK-20, CEA, hTERT.Membrane arraysRT-PCR4 mL72 patients, 30 controls/BloodI–IVWang, 2006.11366.7%, 52.8%, 72.2%, 69.4%16,736,329
CGM2 (CEACAM7)RT-PCRCACO-2 and HT-29 cell spiking20 mL78 patients, 115 controls/BloodA–D DukesDouard, 2001.11659%11,331,451
CEACAM5, CEACAM7Immuno bead multiplex RT-PCRHBB20 mL84 patients, 41 controls, 32 non CRC patients/BloodI–IVDouard, 2005.11555%, 45%15,843,204
EPCAM, EGFR.Immuno magnetic selection (IMS), multiplex RT-PCRT84, HT29, SW948 and SW1116 cell spikingCEA5 mL76 patients, 106 controls/BloodI–IVZieglschmid, 2007.10788%, 12%.17,649,779
EGFRRT-PCRImmunohistochemistry (IHC)CEA (45%), CK-19 (27%)5 mL38 patients, 38 controls/BloodB, C DukesDe luca, 2000.118(73%)10,778,975
RT-PCR3 mL16 patients, 23 controls/BloodAdvanced-stageClarke, 2003.11912.5%12,527,944
EGFR, HLMRT-PCRNorthern blotting, HT11C cell spiking3 mL1 patients, 9 controls/BloodMetastaticFournier, 1999.120100%10,446,991
EGFR, Tenascin C.5 mL41 patients, 40 controls/BloodI–IVGazzaniga, 2005.12149%16,211,285
PLS3RT-PCRFluorescent immunocytochemistryCEA711 patients, 25 controls/BloodDukes A, B, C, and DYokobori, 2013.12225%23,378,342
PLS3, AQP5RT-PCRFluorescent Immuno cytochemistryCD45 (−)10 mL177 patients, 25 controls/BloodDukes A, B, C, and DSugimachi, 2014.123-24,217,791
CD45 magnetic bead depletionFISH ImmunofluorescentCEP8≥3 and7.5 mL45 patients, 25 controls/BloodI–IVShan, 201413155%25,109,507
PKP3, AGR2.Bioinformatic analysis and RT-PCRGp5d, LoVo, DLD1, LS513, HT29, OJC4, OJC5, OJC6 cell spikingS100A16, S100A6, LGALS4, CLDN3.10 mL21 patients and controls/BloodIII–IVValladares-Ayerbes, 2008.12440%, 81.8%18,801,625
AGR2, LGR5.qRT-PCR10 mL54 patients, 19 controls/BloodI–IVValladares-Ayerbes, 2012.12684.9%, 90.5%22,605,983
DCLK1, LGR5qRT-PCR10 mL58 patients, 58 controls/BloodI–IVMirzaei, 2015.12763.7%25,631,749
LGR5mRNA ISHEpCAM, CK8, CK18, CK19 Twist1, Vimentin, AKT2, SNAI1, CD45 (−)5 mL66 patients,/BloodI–IVWang, 2018.12886.4%29,949,050
CK20, Tyrosinase, PSA.RT-PCR, Nucleic acid sequence-based amplification (NASBA assay)HT-29 cell spiking, In vitro cell assay2 mL12 patients, 8 controls/BloodBurchill, 2002.13211,857,020
MAGE-AElectrochemiluminescence (ECL), RT-PCRSequencing analysisuMAGE-A, M-A1, M-A3, M-A1210 mL12 patients, 20 controls/BloodI–IVMiyashiro, 2001.13329%11,238,304
DVL1Microarray and enzymatic chip array (WEnCA)IHCPSG2, TMPO, CD55, ELAVL4, PDX1, CTHRC1, CA9, TK1, UBE2C, FOXM1, PDE6D, PSAT1, CHRNB1,CEA,BMI CAP2, MMP13, OLFM4, PTTG1, MYC, MET, ENO2, MUC1, KRT19, BIRC5, HMGB1, KRT20, hTERT, GCNT1, NPM14 mL214 patients/BloodI–IIIHuang, 2013.13455%24,129,181
CD47CellsearchEPCAM, CD45 (−)20–30 mL72 patients/BloodI–IVSteinert, 2014.13514%24,599,131
CD44v9OncoQuickqRT-PCR20 mL150 patients, 15 controls/BloodI–IVKatoh, 2015.13640%25,550,556
CK19, AGR2, CK8, CK9.CellSearchnTSPAN8, LAD1, CK20, IGFBP5, GPX2, FABP1, S100A1,6 CK8, PRSS8, CDX1, CEACA,M5, AKR1C3, RARRES2, REG1A, IGFBP4, CD44, TRIM2, CXCL1, SATB2, NQO1, CK19, MAPT, IGFBP3, COL4A1, FCGBP, SLC6A8, CDH5, CDH17, EGFR, S100P, HOXB9, CDH1, MACROD1,30 mL142 patients, 30 controls/BloodMetastatic colorectal cancerMostert, 2015.12566%25,655,581
CK20, CEA, AGR2, MGB2, DLL4, EphA2, Her3, PDGFRαqRT-PCR7.5 mL24 patients/BloodIII–IVBao, 2013.13759%23,990,866
CK-20, CEA, CK-19, hTERT.TM4SF3, CK19.Membrane arraysRT-PCR4 mL157 patients, 80 controls/BloodI–IVWang, 2007.11450%17,406,027
RT-PCRCEA, CK20, TACSTD1,10 mL28 patients, 19 controls/BloodI–IVXi, 2007.10196.4%17,525,108
DCLK1, LGR5, EpCAM, CK8, CK9, CK19, Vimentin, TwistqRT-PCR, IHC10 mL78 patients and controls/BloodI–IVMirzaei, 2016.10926,383,518
CanPatrol CTC enrichment(ISH) assay5 mL38 patients, 27 controls/BloodI–IVWu, 2015.11067%25,909,322
PSG2, ELAVL4, TK1, UBE2C, PDE6D, PSAT1, CHRNB1, BMI1, CAP2, MMP13, OLFM4, PTTG1, MYC, MET, MUC1, HMGB1, hTERT, BIRC5,Enzyme immunoassay test kitCEA3 mL298 patients/BloodI–IIIChang, 2016.138-27,701,415
PI3Kα, Akt-2, Twist1 ALDH1antiCD45 specific antibodies (Dynabeads, Invitrogen)qRT-PCR and multiplex-PCR_8 mL78 patients, 20 controls/BloodI–IVNing, 2018.12955%27,503,579
CK19, MUC1, CD44, CD133, ALDH1CD45 Human MicroBeads (Miltenyi Biotec), enrichment of cytokeratin (Miltenyi Biotec)Flowcytometry, CellSearch, qRT-PCR, Cytomorphology, PC3, MDA-MB-231 and SKBR3 cell spiking_7.5 mL63 patients, 40 controls/BloodI–IIIBahnassy, 2019.139(55.6%), (46.0%), (44.4%), (41.3%) (41.3%)30,578,762
CEACAM5, CK19, AGR2, LGR5Inertial microfluidics combined with droplet digital PCRqRT-PCR, HT-29 and LoVo cell spiking9 mLPatients and controls/BloodAdvancedMethai, 2019.164-31,304,099
The biomarkers which worked for prognostic of CRC in circulating tumor cells Some prognosis markers have nearly the same functional patterns as molecular markers related to CRC. Studies have reported on colorectal exosome prognostic markers such as ALIX (ALG 2-interacting protein X),140,141 Hsp60,142 Hsp70,141 CEA,143 ATP-binding cassette transporter G1 (ABCG1),144 copine III (CPNE3),145 and ΔNp7370 in cancer patients. Tauro et al, used multiple isolation methods to detect known exosome markers such as ALIX, TSG101, HSP70, and other specific and novel markers listed in Table 5.141 Chen et al, applied bioinformatic analysis for introduction of two panels and validated them.146 Chiba et al, reported that exosomes derived from CRC cell lines contain mRNA, microRNA, and natural antisense RNA as listed in Table 5.71
Table 5

The biomarkers which worked for prognostic of CRC in exosome

BiomarkerTechnique of exosome isolationTechnique of exosome validationTechnique of markers detection or validationRelated markerPatients (number/type)Patient stageAuthor/year:PMID
AlixGSE37364, GSE10714, GSE4183, GSE18105, GSE4107, GSE9348, GSE8671, IHCPGK1, PKM, ANXA5, ENO1, HSP90AB1, MSN72 patients, 27 controls, and 98 sample (literature bioinformatic)I–IVValcz G, 2016.14027,150,162
ΔNp73UC-Exo* centrifugation 120,000 and PVDF filterAcetylcholinesterase activity, flow cytometry quantification, transmission electron microscopy, Western blot analysisqRT-PCR, Cell culture and transfectionCEA69 patients and control tissues, HCT116 cell lines.I–IVSoldevilla, 2013.7024,067,531
Hsp60UC-ExoTEM AChEase:acetylcholinesterase assay, Western blotIHC, ELISA, immunogold electron microscopyHsc70, Alix, CD57, CD6857 patients and control tissues, 2 blood sampleI–IIICampanella, 2015.14326,060,090
RPL13A, HMBS, TBPUC-ExoBCA, Western blottingqRT-PCRmiR-21, miR-34, miR-143, miR-192, miR-215, miR-22WiDr, HCT-15, SW480 cell linesChiba, 2012.7122,895,844
TSAP6, CEAUC-ExoFlow Cytometry, Western blottingqRT-PCR, IHC, levels of circulating exosomes in plasma91 patients, 12 controls/tissue and bloodI–IVSilva, 2012.14222,420,032
Alix, TSG101, HSP70, CD9, CD81, ESCRT-III, VPS32C/CHMP4C, VAMP2, EFNB1, EFNB2, EPHA2–8, EPHB1–4, CTNNB1, TNIK, CRK, GRB2UC-Exo, DG-Exo: OptiPrep™ density gradient exosome, IAC-Exo: EpCAM immunoaffinity captureWestern blotting, EM: Electron microscopyGeLC–MS/MS (protein profiling)LIM1863 cell lineTauro, 2012.14122,285,593
BCL7C, EEF1G, RAB13, RSP3, TPT1, SCARB1, SCDUC-ExoA33-Exos and EpCAM-Exos (Dynabeads™), TEM, Western blotSRP02205476, SRP029880 (Microarray)LIM1863 cell lineChen, 2016.14627,917,920
CPNE3UC-ExoTEM, NTA, Western blottingCEA92 patients, 32 controls/BloodSensitivity of 67.5% and a specificity of 84.4%Sun, 2019.14530,078,189
ABCG1Polymer-based precipitation methodTEM, Zetasizer Nano ZSP, Western blotting,qRT-PCR, IHC, GSE1753749Murine cell lineNamba, 2018.14430,364,132

Abbreviation: UC-Exo, ultracentrifugation exosome.

The biomarkers which worked for prognostic of CRC in exosome Abbreviation: UC-Exo, ultracentrifugation exosome. All articles related to CTC (39 diagnosis-related and 57 prognosis-related) were assessed by NOS case-control guidelines as reported in . Of the diagnosis-related articles (40% of the total), 43%, 43%, and 14% scored 7, 6, and 5, respectively. Of the prognosis-related articles (60% of the total), 49%, 31.5%, 14%, and 1.5% scored 7, 6, 5, and 4, respectively; and 4% could not to be scored. All articles related to exosomes (Five diagnosis-related and nine prognosis-related) were assessed by the NOS case-control guidelines in . Of the diagnosis-related articles (36% of total), 20%, 40%, and 40% scored 7, 6, and 5, respectively. Of the prognosis-related articles (64% of total), 67%, 22%, and 11% scored 7, 6, and 5, respectively. The 0–3 and 8–9 scores were not given out in these studies, so the NOS number varied from 4 to 7. About 99.3% of systematically imported articles scored over 5, 20% ofthe articless scored 5, and 79.7% scored 6 or 7.

Bioinformatics approach to systematic results

This systematic search identified 66 CTC gene markers for the diagnosis of CRC, 65 CTC gene markers for prognosis with repetition, 10 exosome gene markers for diagnosis of CRC, and 35 exosome gene markers for prognosis as shown in Tables 2–5.

Protein–protein interaction network via STRING analysis

In the gene network, biochemical functions and identified pathways were obtained from gene expression data, and the results are shown in Figures 3 and 4 and supplementary (online resources). Surprisingly, the cellular components of exosomes and CTC highlight extracellular space, region and exosome, plasma membrane, and cell junction. Their molecular function highlights cell adhesion molecule binding and protein binding. Biological processes included regulation of cellular component movement, assembly, localization, organization, and response to external stimuli.
Figure 3

Network and enrichment analysis visualization. Combined screenshots from the STRING website, showing results obtained upon entering a set of 131 proteins suspected to be involved in circulating tumor cell markers. According on kmeans clustering has been selected, the corresponding protein nodes in three categories automatically highlighted in colors.

Figure 4

Network and enrichment analysis visualization. Combined screenshots from the STRING website, showing results obtained upon entering a set of 45 proteins suspected to be involved in Exosome markers. According on kmeans clustering has been selected, the corresponding protein nodes in three categories automatically highlighted in colors.

Network and enrichment analysis visualization. Combined screenshots from the STRING website, showing results obtained upon entering a set of 131 proteins suspected to be involved in circulating tumor cell markers. According on kmeans clustering has been selected, the corresponding protein nodes in three categories automatically highlighted in colors. Network and enrichment analysis visualization. Combined screenshots from the STRING website, showing results obtained upon entering a set of 45 proteins suspected to be involved in Exosome markers. According on kmeans clustering has been selected, the corresponding protein nodes in three categories automatically highlighted in colors.

Gene ontology

The results of EnrichR web tools in supplementary Table S4 (online resources) can be used to accurately understand the molecular pathways. The common pathways in biomarkers such as proteoglycans in cancer, focal adhesion pathways in cancer, integrin, Rap1, MAPK signaling pathways, angiogenesis, p53 pathways, and viral processes were similar and related to cancer.

Discussion

CRC is a common malignancy that often has a poor prognosis.147 The tumor microenvironment contributes to its progression148 and cross-talk between cancer cells and exosomes play a critical role in this dynamic network.149 Their identification and characterization are important steps to improve understanding of cellular and molecular cancer metastasis. Tracking of tumor-associated molecular markers in the blood can be used to assess the presence of residual disease, recurrence, and resistance.150 This systematic review highlights new trends and approaches in CRC biomarker discovery using CTC and exosomes. Evidence related to diagnosis of CRC by means of CTC markers was addressed in 38 articles (Table 2) and 54 articles discussed prognosis of CRC using CTC markers (Table 4). Only 14 articles examined exosomes, five about diagnosis and nine about prognosis (Tables 3 and 5). Our results show that the most common markers introduced in CTCs were CEA (35 of 94 studies) and CK20 (33 of 94 studies), especially using quantitative real-time polymerase chain reaction. Most markers investigated for exosomes, in addition to CD9, CD81, ALIX, and TSG101, were including EPCAM and HSP, especially using ultracentrifugation. Comparison of 131 CTC markers and 45 exosomes markers showed only three common markers (CEA, CD9, and EPCAM) on the gene list as diagnostic and prognostic biomarkers. A half-century-old investigation of CEA in CRC was the first step in the identification of a much larger family of 12 CEACAMs.151,152 Gene encoding CEA is a member of the immunoglobulin supergene family153 that plays a role in cell adhesion and tumor progression,154 even in protecting the colon from microbial infection.155 CEA is involved in the metastatic cascade process through positive regulation of cell migration and invasion;156–158 thus, the monitoring of CEA as a cost-effective and frequent indicator of recurrence of CRC has been investigated for years.159 Integrin on tumor exosomes may play an important role in modulating organ-specific metastasis in cancer progression. CD9 is a member of the tetraspanin superfamily commonly detected in all types of exosomes involved in pathophysiologic processes such as cellular adhesion, growth, motility, cell–cell fusion, signal transduction, and tumor metastasis.160 EPCAM is a membranous glycoprotein that is a CSC marker in tumor cells in the basolateral surface of most normal epithelial tissue and its role is to connect cells by means of calcium. The expression of this marker increases in benign and malignant tumors that arise from epithelial tissue.161 The first step in metastasis is the separation of cancerous cells from primary tumors. CEA, CD9, and EPCAM are closely correlated with tumor progression as a poor prognostic factor and is required for the survival of CTCs in some cancers.162 Taken together, it appears that the signature of the CTC and exosome biomarkers are similar and follow common pathways; thus, exosomes can be applied as alternative tools for guiding better molecular pathology in the fight against cancer. Precision medicine is changing clinical practice by tailoring treatment based on an individual’s genetic makeup. Recent studies have shown that CTC and circulating tumor DNA provide complementary information and the use of both approaches to study tumor metastasis is warranted.163 CTC and exosomes can pave a path as diagnostic and prognostic procedures using the heterogeneity of tumor sites as they are released into the blood from live origins and can be analyzed at the DNA, RNA, and protein levels. It is undeniable that more investigation is needed to compare them, especially for cancer patients. Various CTC isolating techniques each have its own advantages and disadvantages as to their CTC capture capacity and subgrouping of CTCs based on various markers. Similar problems also exist for exosomes, with a lack of a proven rapid and high-yield approach for extracting exosomes for downstream analysis.164 Microfluidic devices and bioinformatics analysis might play an important role in solving the current shortcomings of the liquid biopsy concept. Microfluidics, by using inertial focusing/hydrodynamics (laminar flow in microchannels) and applying spiral, acoustic, electrophoretic, and electromagnetic features passively separate CTCs and exosomes from the other background calls.165 Immobilizing specific antibodies either on micro-posts or in a herringbone design against their marker might be useful; it is easy to explore and yields quantitative readouts with high sensitivity, low cost, and minimal sample handling. Finally, although the potential clinical utility of these techniques is clear, more effort is needed to use the full potential of liquid biopsy in clinical settings.166

Future perspectives

Currently, isolation and purification of tumor-derived exosome in a worm bag of EVs is technically cumbersome and also isolation of CTCs has its own limitations. Therefore, combined use of these two biomarkers together as a liquid biopsy requires large-scale clinical trials. Microfluidic devices and bioinformatics analysis might play an important role in solving the current shortcomings of the liquid biopsy. Additionally, cross talking of CTCs and tumor-derived exosomes in a tumor microenvironment should become a heated question in exploring the premetastatic niche. As such, more research is needed on CTCs and exosome’s overlapping molecular pathways to determine more effective biomarker signatures of CRC, especially in the metastatic form. Design of PRISMA flow diagram explaining details of our search process was applied during the article selection for circulating tumor cell. Design of PRISMA flow diagram explained details of our search process that applied during the article selection for Exosome.
  161 in total

1.  Disseminated single tumor cells as detected by real-time quantitative polymerase chain reaction represent a prognostic factor in patients undergoing surgery for colorectal cancer.

Authors:  Ulrich Guller; Paul Zajac; Annelies Schnider; Beatrix Bösch; Stefan Vorburger; Markus Zuber; Giulio Cesare Spagnoli; Daniel Oertli; Robert Maurer; Urs Metzger; Felix Harder; Michael Heberer; Walter Richard Marti
Journal:  Ann Surg       Date:  2002-12       Impact factor: 12.969

2.  Usefulness of transcription-reverse transcription concerted reaction method for detecting circulating tumor cells in patients with colorectal cancer.

Authors:  Nobutaka Sato; Naoko Hayashi; Yu Imamura; Yohei Tanaka; Koichi Kinoshita; Jyunji Kurashige; Seiya Saito; Ryuichi Karashima; Kotaro Hirashima; Yohei Nagai; Yuji Miyamoto; Masaaki Iwatsuki; Yoshifumi Baba; Masayuki Watanabe; Hideo Baba
Journal:  Ann Surg Oncol       Date:  2011-07-06       Impact factor: 5.344

3.  Comparative analysis of tumor markers and evaluation of their predictive value in patients with colorectal cancer.

Authors:  Zhi-Ping Liu; Li-Min Li; Xiu-Li Liu; Da-Xin Zhang
Journal:  Onkologie       Date:  2012-02-20

4.  Quantitative real-time RT-PCR for detection of disseminated tumor cells in peripheral blood of patients with colorectal cancer using different mRNA markers.

Authors:  Ronny Schuster; Nicole Max; Benno Mann; Karin Heufelder; Florian Thilo; Jörn Gröne; Franziska Rokos; Heinz-Johannes Buhr; Eckhard Thiel; Ulrich Keilholz
Journal:  Int J Cancer       Date:  2004-01-10       Impact factor: 7.396

5.  Quantitative real-time RT-PCR detection for survivin, CK20 and CEA in peripheral blood of colorectal cancer patients.

Authors:  ChangXin Shen; LiHua Hu; Lin Xia; YiRong Li
Journal:  Jpn J Clin Oncol       Date:  2008-10-08       Impact factor: 3.019

6.  A logistic model for the detection of circulating tumour cells in human metastatic colorectal cancer.

Authors:  Jorge Barbazán; María Vieito; Alicia Abalo; Lorena Alonso-Alconada; Laura Muinelo-Romay; Marta Alonso-Nocelo; Luís León; Sonia Candamio; Elena Gallardo; Urbano Anido; Andreas Doll; María de los Ángeles Casares; Antonio Gómez-Tato; Miguel Abal; Rafael López-López
Journal:  J Cell Mol Med       Date:  2012-10       Impact factor: 5.310

7.  Early Assessment of Colorectal Cancer by Quantifying Circulating Tumor Cells in Peripheral Blood: ECT2 in Diagnosis of Colorectal Cancer.

Authors:  Chih-Jung Chen; Wen-Wei Sung; Hung-Chang Chen; Yi-Jye Chern; Hui-Ting Hsu; Yueh-Min Lin; Shu-Hui Lin; Konan Peck; Kun-Tu Yeh
Journal:  Int J Mol Sci       Date:  2017-03-31       Impact factor: 5.923

8.  Isolation of circulating tumor cells in a preclinical model of osteosarcoma: Effect of chemotherapy.

Authors:  Antoine Chalopin; Marta Tellez-Gabriel; Hannah K Brown; François Vallette; Marie-Françoise Heymann; Francois Gouin; Dominique Heymann
Journal:  J Bone Oncol       Date:  2018-07-26       Impact factor: 4.072

9.  Tumour-associated circulating microparticles: A novel liquid biopsy tool for screening and therapy monitoring of colorectal carcinoma and other epithelial neoplasia.

Authors:  Arnulf Willms; Clara Müller; Henrike Julich; Niklas Klein; Robert Schwab; Christoph Güsgen; Ines Richardsen; Sebastian Schaaf; Marcin Krawczyk; Marek Krawczyk; Frank Lammert; Detlef Schuppan; Veronika Lukacs-Kornek; Miroslaw Kornek
Journal:  Oncotarget       Date:  2016-05-24

Review 10.  Diagnostic technologies for circulating tumour cells and exosomes.

Authors:  Huilin Shao; Jaehoon Chung; David Issadore
Journal:  Biosci Rep       Date:  2015-11-24       Impact factor: 3.840

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  7 in total

Review 1.  Colorectal cancer-derived exosomes and modulation KRAS signaling.

Authors:  Yan Hua Wan; Qi Sheng Liu; Sha Sha Wan; Ri Wei Wang
Journal:  Clin Transl Oncol       Date:  2022-07-05       Impact factor: 3.340

2.  Characterization of extracellular vesicles isolated from different liquid biopsies of uveal melanoma patients.

Authors:  Carmen Luz Pessuti; Deise Fialho Costa; Kleber S Ribeiro; Mohamed Abdouh; Thupten Tsering; Heloisa Nascimento; Alessandra G Commodaro; Allexya Affonso Antunes Marcos; Ana Claudia Torrecilhas; Rubens N Belfort; Rubens Belfort; Julia Valdemarin Burnier
Journal:  J Circ Biomark       Date:  2022-06-27

3.  Exosomal miR-487a derived from m2 macrophage promotes the progression of gastric cancer.

Authors:  Xuefeng Yang; Shuang Cai; Yue Shu; Xun Deng; Yuanwei Zhang; Nian He; Lei Wan; Xu Chen; Yan Qu; Shouyang Yu
Journal:  Cell Cycle       Date:  2021-01-31       Impact factor: 4.534

4.  Evaluation of the antioxidative and genotoxic effects of sodium butyrate on breast cancer cells.

Authors:  Burcu Yuksel; Asuman Deveci Ozkan; Duygu Aydın; Zeynep Betts
Journal:  Saudi J Biol Sci       Date:  2022-01-03       Impact factor: 4.219

Review 5.  Updates on Clinical Use of Liquid Biopsy in Colorectal Cancer Screening, Diagnosis, Follow-Up, and Treatment Guidance.

Authors:  Omayma Mazouji; Abdelhak Ouhajjou; Roberto Incitti; Hicham Mansour
Journal:  Front Cell Dev Biol       Date:  2021-05-24

Review 6.  Electrochemical Biosensors for Determination of Colorectal Tumor Biomarkers.

Authors:  Jennifer Quinchia; Danilo Echeverri; Andrés Felipe Cruz-Pacheco; María Elena Maldonado; Jahir Orozco
Journal:  Micromachines (Basel)       Date:  2020-04-14       Impact factor: 2.891

7.  Low expression of Talin1 is associated with advanced pathological features in colorectal cancer patients.

Authors:  Somayeh Vafaei; Leili Saeednejad Zanjani; Zohreh Habibi Shams; Marzieh Naseri; Fahimeh Fattahi; Elmira Gheytanchi; Mahdi Alemrajabi; Marzieh Ebrahimi; Zahra Madjd
Journal:  Sci Rep       Date:  2020-10-20       Impact factor: 4.379

  7 in total

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